Summary: Complex computer models play a crucial role in air quality research. These models are used to evaluate potential regulatory impacts of emission control strategies and to estimate air quality in areas without monitoring data. For both of these purposes, it is important to calibrate model output with monitoring data to adjust for model biases and improve spatial prediction. In this paper, we propose a new spectral method to study and exploit complex relationships between model output and monitoring data. Spectral methods allow us to estimate the relationship between model output and monitoring data separately at different spatial scales, and to use model output for prediction only at the appropriate scales. The proposed method is com...
Abstract.This technical report extends to a spatial setting, an existing temporal two-step linear re...
Evaluation of physically based computer models for air quality applications is crucial to assist in ...
Statistical downscaling is a technique that is used to extract high-resolution information from regi...
This paper discusses statistical methods for mapping monitored air quality data. A key issue in mapp...
Recently, downscaling global atmospheric model outputs (GCTM) for the USEPA Community Multiscale Air...
Legislative actions regarding ozone pollution use air quality models (AQMs) such as the Community Mu...
Constructing maps of pollution levels is vital for air quality management, and presents statistical ...
There is growing evidence in the epidemiologic literature of the relationship between air pollution ...
The statistical evaluation of an air quality model is part of a broader process, generally referred ...
Accurate, instantaneous and high resolution spatial air-quality information can better inform the pu...
A more sensible use of monitoring data for the evaluation and development of regional-scale atmosphe...
with their computational/technical characteristics, are at present less useful for long-term (decada...
International audiencePublic health institutions need high-resolution next-day forecasts so they can...
The main topic of this thesis is how to combine model outputs from deterministic models with measure...
Abstract.This technical report extends to a spatial setting, an existing temporal two-step linear re...
Evaluation of physically based computer models for air quality applications is crucial to assist in ...
Statistical downscaling is a technique that is used to extract high-resolution information from regi...
This paper discusses statistical methods for mapping monitored air quality data. A key issue in mapp...
Recently, downscaling global atmospheric model outputs (GCTM) for the USEPA Community Multiscale Air...
Legislative actions regarding ozone pollution use air quality models (AQMs) such as the Community Mu...
Constructing maps of pollution levels is vital for air quality management, and presents statistical ...
There is growing evidence in the epidemiologic literature of the relationship between air pollution ...
The statistical evaluation of an air quality model is part of a broader process, generally referred ...
Accurate, instantaneous and high resolution spatial air-quality information can better inform the pu...
A more sensible use of monitoring data for the evaluation and development of regional-scale atmosphe...
with their computational/technical characteristics, are at present less useful for long-term (decada...
International audiencePublic health institutions need high-resolution next-day forecasts so they can...
The main topic of this thesis is how to combine model outputs from deterministic models with measure...
Abstract.This technical report extends to a spatial setting, an existing temporal two-step linear re...
Evaluation of physically based computer models for air quality applications is crucial to assist in ...
Statistical downscaling is a technique that is used to extract high-resolution information from regi...